Least trimmed squares (LTS) provides a parametric family of high breakdown estimators in regression with better asymptotic properties than least median of squares (LMS) estimators. We adapt the forward search algorithm of Atkinson (1994) to LTS and provide methods for determining the amount of data to be trimmed. We examine the efficiency of different trimming proportions by simulation and demonstrate the increasing efficiency of parameter estimation as larger proportions of data are fitted using the LTS criterion. Some standard data examples are analysed. One shows that LTS provides more stable solutions than LMS
The methods of very robust regression resist up to 50% of outliers. The algorithms for very robust r...
The Least Trimmed Squares (LTS) and Least Median of Squares (LMS) estimators are popular robust regr...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...
Least trimmed squares (LTS) provides a parametric family of high breakdown estimators in regression ...
Data mining aims to extract previously unknown patterns or substructures from large databases. In st...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
In the famous least sum of trimmed squares (LTS) of residuals estimator (Rousseeuw (1984)), residual...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
The Least Trimmed Squares (LTS) estimator is a frequently used robust estimator of regression. When ...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
A common problem in applied regression analysis is to select the variables that enter a linear regre...
summary:From the practical point of view the regression analysis and its Least Squares method is cle...
Abstract: Two of the most common methods for robust regression are least trimmed squares (LTS) and l...
The main result of this paper is a new exact algorithm computing the estimate given by the Least Tri...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
The methods of very robust regression resist up to 50% of outliers. The algorithms for very robust r...
The Least Trimmed Squares (LTS) and Least Median of Squares (LMS) estimators are popular robust regr...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...
Least trimmed squares (LTS) provides a parametric family of high breakdown estimators in regression ...
Data mining aims to extract previously unknown patterns or substructures from large databases. In st...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
In the famous least sum of trimmed squares (LTS) of residuals estimator (Rousseeuw (1984)), residual...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
The Least Trimmed Squares (LTS) estimator is a frequently used robust estimator of regression. When ...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
A common problem in applied regression analysis is to select the variables that enter a linear regre...
summary:From the practical point of view the regression analysis and its Least Squares method is cle...
Abstract: Two of the most common methods for robust regression are least trimmed squares (LTS) and l...
The main result of this paper is a new exact algorithm computing the estimate given by the Least Tri...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
The methods of very robust regression resist up to 50% of outliers. The algorithms for very robust r...
The Least Trimmed Squares (LTS) and Least Median of Squares (LMS) estimators are popular robust regr...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...